Bayesian information-theoretic calibration of patient-specific radiotherapy sensitivity parameters for informing effective scanning protocols in cancer

09/06/2020
by   Heyrim Cho, et al.
0

With new advancements in technology, it is now possible to collect data for a variety of different metrics describing tumor growth, including tumor volume, composition, and vascularity, among others. For any proposed model of tumor growth and treatment, we observe large variability among individual patients' parameter values, particularly those relating to treatment response; thus, exploiting the use of these various metrics for model calibration can be helpful to infer such patient-specific parameters both accurately and early, so that treatment protocols can be adjusted mid-course for maximum efficacy. However, taking measurements can be costly and invasive, limiting clinicians to a sparse collection schedule. As such, the determination of optimal times and metrics for which to collect data in order to best inform proper treatment protocols could be of great assistance to clinicians. In this investigation, we employ a Bayesian information-theoretic calibration protocol for experimental design in order to identify the optimal times at which to collect data for informing treatment parameters. Within this procedure, data collection times are chosen sequentially to maximize the reduction in parameter uncertainty with each added measurement, ensuring that a budget of n high-fidelity experimental measurements results in maximum information gain about the low-fidelity model parameter values. In addition to investigating the optimal temporal pattern for data collection, we also develop a framework for deciding which metrics should be utilized at each data collection point. We illustrate this framework with a variety of toy examples, each utilizing a radiotherapy treatment regimen. For each scenario, we analyze the dependence of the predictive power of the low-fidelity model upon the measurement budget.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/25/2021

Utilizing gradient approximations to optimize data selection protocols for tumor growth model calibration

The use of mathematical models to make predictions about tumor growth an...
research
08/23/2023

Predictive Digital Twin for Optimizing Patient-Specific Radiotherapy Regimens under Uncertainty in High-Grade Gliomas

We develop a methodology to create data-driven predictive digital twins ...
research
05/30/2022

Goal-Oriented A-Posteriori Estimation of Model Error as an Aid to Parameter Estimation

In this work, a Bayesian model calibration framework is presented that u...
research
08/28/2023

Patient-specific, mechanistic models of tumor growth incorporating artificial intelligence and big data

Despite the remarkable advances in cancer diagnosis, treatment, and mana...
research
08/03/2023

Not All Actions Are Created Equal: Bayesian Optimal Experimental Design for Safe and Optimal Nonlinear System Identification

Uncertainty in state or model parameters is common in robotics and typic...
research
06/24/2022

Mutual-Information Based Optimal Experimental Design for Hyperpolarized ^13C-Pyruvate MRI

A key parameter of interest recovered from hyperpolarized (HP) MRI measu...

Please sign up or login with your details

Forgot password? Click here to reset